Test out these 17 diagnosis possibilities to find out which one is the best? Or maybe the Qualcomm Xprize for the tricorder?
http://www.worldscientific.com/doi/abs/10.1142/S0129065714500361
José R. Villar
Corresponding author.
Computer Science Department, University of Oviedo, ETSIMO, Oviedo, Asturias 33005, Spain
Silvia González
Instituto Tecnológico de Castilla y León c/López Bravo 70 Burgos, Burgos 09001, Spain
Javier Sedano
Instituto Tecnológico de Castilla y León c/López Bravo 70 Burgos, Burgos 09001, Spain
Camelia Chira
Computer Science Department, Tech. University of Cluj-Napoca, 28 Gh. Baritiu Street, 400027 Cluj-Napoca, Romania
Jose M. Trejo-Gabriel-Galan
Neurology Department of the Burgos' Hospital, Burgos, Spain
Accepted: 4 November 2014
Published: 16 February 2015
The
development of efficient stroke-detection methods is of significant
importance in today's society due to the effects and impact of stroke on
health and economy worldwide. This study focuses on Human Activity
Recognition (HAR), which is a key component in developing an early
stroke-diagnosis tool. An overview of the proposed global approach able
to discriminate normal resting from stroke-related paralysis is
detailed. The main contributions include an extension of the Genetic
Fuzzy Finite State Machine (GFFSM) method and a new hybrid feature
selection (FS) algorithm involving Principal Component Analysis (PCA)
and a voting scheme putting the cross-validation results together.
Experimental results show that the proposed approach is a
well-performing HAR tool that can be successfully embedded in devices.
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